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Olfaction recognition by EEG analysis using differential evolution induced Hopfield neural net

机译:基于脑电图分析的差分进化诱导Hopfield神经网络识别嗅觉

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The paper proposes a novel approach to recognize smell stimuli from the electroencephalogram (EEG) signals acquired during the period of inhalation. The main contribution of the paper lies in feature selection by an evolutionary algorithm and pattern classification by Differential Evolution induced Hopfield neural network. One additional merit of the work lies in data point reduction by Principal component analysis. Experiments undertaken on 25 subjects with 10 smell stimuli indicate that the proposed scheme of feature selection, data point reduction and classification outperforms the traditional approach by a wide margin. Experimental results confirm that the smell stimuli excites the pre frontal lobe of the human brain and is responsible for a special type of brain rhythms (EEG signal) in alpha-band, theta-band and delta-band.
机译:本文提出了一种从吸入期间所采集的脑电图(EEG)信号识别气味刺激的新颖方法。本文的主要贡献在于通过进化算法进行特征选择和通过差分进化诱导的Hopfield神经网络进行模式分类。这项工作的另一个优点是可以通过主成分分析来减少数据点。在25个具有10种气味刺激的对象上进行的实验表明,所提出的特征选择,数据点减少和分类方案在很大程度上优于传统方法。实验结果证实,气味刺激会刺激人脑的额叶前叶,并导致α波段,θ波段和δ波段的特殊类型的脑节律(EEG信号)。

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